Deep-Motion-Net: GNN-based volumetric organ shape reconstruction from single-view 2D projections
Isuru Wijesinghe, Michael Nix, Arezoo Zakeri, Alireza Hokmabadi,, Bashar Al-Qaisieh, Ali Gooya, Zeike A. Taylor

TL;DR
Deep-Motion-Net introduces a GNN-based method for reconstructing 3D organ shapes from a single 2D X-ray image, aiding precise radiotherapy without invasive markers.
Contribution
It presents a novel end-to-end GNN architecture that reconstructs volumetric organ shapes from single-view images using synthetic training data and deep feature fusion.
Findings
Achieved mean prediction errors around 0.16-0.22 mm on synthetic data.
Demonstrated qualitative success on in-treatment liver images.
Predicted organ motion with high accuracy in controlled tests.
Abstract
We propose Deep-Motion-Net: an end-to-end graph neural network (GNN) architecture that enables 3D (volumetric) organ shape reconstruction from a single in-treatment kV planar X-ray image acquired at any arbitrary projection angle. Estimating and compensating for true anatomical motion during radiotherapy is essential for improving the delivery of planned radiation dose to target volumes while sparing organs-at-risk, and thereby improving the therapeutic ratio. Achieving this using only limited imaging available during irradiation and without the use of surrogate signals or invasive fiducial markers is attractive. The proposed model learns the mesh regression from a patient-specific template and deep features extracted from kV images at arbitrary projection angles. A 2D-CNN encoder extracts image features, and four feature pooling networks fuse these features to the 3D template organ…
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Taxonomy
Topics3D Shape Modeling and Analysis · Medical Image Segmentation Techniques · Advanced Vision and Imaging
MethodsHuMan(Expedia)||How do I get a human at Expedia? · *Communicated@Fast*How Do I Communicate to Expedia? · Softmax · Attention Is All You Need · Residual Connection · GAN Least Squares Loss · Cycle Consistency Loss · Batch Normalization · Tanh Activation · Instance Normalization
